---
title: "Hayhooks"
id: hayhooks
slug: "/hayhooks"
description: "Hayhooks is a web application you can use to serve Haystack pipelines through HTTP endpoints. This page provides an overview of the main features of Hayhooks."
---

# Hayhooks

Hayhooks is a web application you can use to serve Haystack pipelines through HTTP endpoints. This page provides an overview of the main features of Hayhooks.

:::info Hayhooks GitHub

You can find the code and an in-depth explanation of the features in the [Hayhooks GitHub repository](https://github.com/deepset-ai/hayhooks).
:::

## Overview

Hayhooks simplifies the deployment of Haystack pipelines as REST APIs. It allows you to:

- Expose Haystack pipelines as HTTP endpoints, including OpenAI-compatible chat endpoints,
- Customize logic while keeping minimal boilerplate,
- Deploy pipelines quickly and efficiently.

### Installation

Install Hayhooks using pip:

```shell
pip install hayhooks
```

The `hayhooks` package ships both the server and the client component, and the client is capable of starting the server. From a shell, start the server with:

```shell
$ hayhooks run
INFO:     Started server process [44782]
INFO:     Waiting for application startup.
INFO:     Application startup complete.
INFO:     Uvicorn running on http://localhost:1416 (Press CTRL+C to quit)
```

### Check Status

From a different shell, you can query the status of the server with:

```shell
$ hayhooks status
Hayhooks server is up and running.
```

## Configuration

Hayhooks can be configured in three ways:

1. Using an `.env` file in the project root.
2. Passing environment variables when running the command.
3. Using command-line arguments with `hayhooks run`.

### Environment Variables

<div className="key-value-table">

|  |  |
| --- | --- |
| Variable                          | Description                        |
| `HAYHOOKS_HOST`                   | Host address for the server        |
| `HAYHOOKS_PORT`                   | Port for the server                |
| `HAYHOOKS_PIPELINES_DIR`          | Directory containing pipelines     |
| `HAYHOOKS_ROOT_PATH`              | Root path of the server            |
| `HAYHOOKS_ADDITIONAL_PYTHON_PATH` | Additional Python paths to include |
| `HAYHOOKS_DISABLE_SSL`            | Disable SSL verification (boolean) |
| `HAYHOOKS_SHOW_TRACEBACKS`        | Show error tracebacks (boolean)    |

</div>

### CORS Settings

<div className="key-value-table">

|  |  |
| --- | --- |
| Variable                           | Description                                         |
| `HAYHOOKS_CORS_ALLOW_ORIGINS`      | List of allowed origins (default: `[*]`)            |
| `HAYHOOKS_CORS_ALLOW_METHODS`      | List of allowed HTTP methods (default: `[*]`)       |
| `HAYHOOKS_CORS_ALLOW_HEADERS`      | List of allowed headers (default: `[*]`)            |
| `HAYHOOKS_CORS_ALLOW_CREDENTIALS`  | Allow credentials (default: `false`)                |
| `HAYHOOKS_CORS_ALLOW_ORIGIN_REGEX` | Regex pattern for allowed origins (default: `null`) |
| `HAYHOOKS_CORS_EXPOSE_HEADERS`     | Headers to expose in response (default: `[]`)       |
| `HAYHOOKS_CORS_MAX_AGE`            | Max age for preflight responses (default: `600`)    |

</div>

## Running Hayhooks

To start the server:

```shell
hayhooks run
```

This will launch Hayhooks at `HAYHOOKS_HOST:HAYHOOKS_PORT`.

## Deploying a Pipeline

### Steps

1. Prepare a pipeline definition (`.yml` file) and a `pipeline_wrapper.py` file.
2. Deploy the pipeline:

   ```shell
   hayhooks pipeline deploy-files -n my_pipeline my_pipeline_dir
   ```
3. Access the pipeline at `{pipeline_name}/run` endpoint.

### Pipeline Wrapper

A `PipelineWrapper` class is required to wrap the pipeline:

```python
from pathlib import Path
from haystack import Pipeline
from hayhooks import BasePipelineWrapper

class PipelineWrapper(BasePipelineWrapper):
    def setup(self) -> None:
        pipeline_yaml = (Path(__file__).parent / "pipeline.yml").read_text()
        self.pipeline = Pipeline.loads(pipeline_yaml)

    def run_api(self, input_text: str) -> str:
        result = self.pipeline.run({"input": {"text": input_text}})
        return result["output"]["text"]
```

## File Uploads

Hayhooks enables handling file uploads in your pipeline wrapper’s `run_api` method by including `files: Optional[List[UploadFile]] = None` as an argument.

```python
def run_api(self, files: Optional[List[UploadFile]] = None) -> str:
    if files and len(files) > 0:
        filenames = [f.filename for f in files if f.filename is not None]
        file_contents = [f.file.read() for f in files]
        return f"Received files: {', '.join(filenames)}"
    return "No files received"
```

Hayhooks automatically processes uploaded files and passes them to the `run_api` method when present. The HTTP request must be a `multipart/form-data` request.

### Combining Files and Parameters

Hayhooks also supports handling both files and additional parameters in the same request by including them as arguments in `run_api`:

```python
def run_api(self, files: Optional[List[UploadFile]] = None, additional_param: str = "default") -> str:
    ...
```

## Running Pipelines from the CLI

### With JSON-Compatible Parameters

You can execute a pipeline through the command line using the `hayhooks pipeline run` command. Internally, this triggers the `run_api` method of the pipeline wrapper, passing parameters as a JSON payload.

This method is ideal for testing deployed pipelines from the CLI without writing additional code.

```shell
hayhooks pipeline run <pipeline_name> --param 'question="Is this recipe vegan?"'
```

### With File Uploads

To execute a pipeline that requires a file input, use a `multipart/form-data` request. You can submit both files and parameters in the same request.

Ensure the deployed pipeline supports file handling.

```shell
## Upload a directory
hayhooks pipeline run <pipeline_name> --dir files_to_index

## Upload a single file
hayhooks pipeline run <pipeline_name> --file file.pdf

## Upload multiple files
hayhooks pipeline run <pipeline_name> --dir files_to_index --file file1.pdf --file file2.pdf

## Upload a file with an additional parameter
hayhooks pipeline run <pipeline_name> --file file.pdf --param 'question="Is this recipe vegan?"'
```

## MCP Support

### MCP Server

Hayhooks supports the Model Context Protocol (MCP) and can act as an MCP Server. It automatically lists your deployed pipelines as MCP Tools using Server-Sent Events (SSE) as the transport method.

To start the Hayhooks MCP server, run:

```shell
hayhooks mcp run
```

This starts the server at `HAYHOOKS_MCP_HOST:HAYHOOKS_MCP_PORT`.

### Creating a PipelineWrapper

To expose a Haystack pipeline as an MCP Tool, you need a `PipelineWrapper` with the following properties:

- **name**: The tool's name
- **description**: The tool's description
- **inputSchema**: A JSON Schema object for the tool's input parameters

For each deployed pipeline, Hayhooks will:

1. Use the pipeline wrapper name as the MCP Tool name,
2. Use the `run_api` method's docstring as the MCP Tool description (if present),
3. Generate a Pydantic model from the `run_api` method arguments.

#### PipelineWrapper Example

```python
from pathlib import Path
from typing import List
from haystack import Pipeline
from hayhooks import BasePipelineWrapper

class PipelineWrapper(BasePipelineWrapper):
    def setup(self) -> None:
        pipeline_yaml = (Path(__file__).parent / "chat_with_website.yml").read_text()
        self.pipeline = Pipeline.loads(pipeline_yaml)

    def run_api(self, urls: List[str], question: str) -> str:
        """
        Ask a question about one or more websites using a Haystack pipeline.
        """
        result = self.pipeline.run({"fetcher": {"urls": urls}, "prompt": {"query": question}})
        return result["llm"]["replies"][0]
```

### Skipping MCP Tool Listing

To deploy a pipeline without listing it as an MCP Tool, set `skip_mcp = True` in your class:

```python
class PipelineWrapper(BasePipelineWrapper):
    # This will skip the MCP Tool listing
    skip_mcp = True

    def setup(self) -> None:
        ...

    def run_api(self, urls: List[str], question: str) -> str:
        ...
```

## OpenAI Compatibility

Hayhooks supports OpenAI-compatible endpoints through the `run_chat_completion` method.

```python
from hayhooks import BasePipelineWrapper, get_last_user_message

class PipelineWrapper(BasePipelineWrapper):
    def run_chat_completion(self, model: str, messages: list, body: dict):
        question = get_last_user_message(messages)
        return self.pipeline.run({"query": question})
```

### Streaming Responses

Hayhooks provides a `streaming_generator` utility to stream pipeline output to the client:

```python
from hayhooks import streaming_generator

def run_chat_completion(self, model: str, messages: list, body: dict):
    question = get_last_user_message(messages)
    return streaming_generator(pipeline=self.pipeline, pipeline_run_args={"query": question})
```

## Running Programmatically

Hayhooks can be embedded in a FastAPI application:

```python
import uvicorn
from hayhooks.settings import settings
from fastapi import Request
from hayhooks import create_app

## Create the Hayhooks app
hayhooks = create_app()

## Add a custom route
@hayhooks.get("/custom")
async def custom_route():
    return {"message": "Hi, this is a custom route!"}

## Add a custom middleware
@hayhooks.middleware("http")
async def custom_middleware(request: Request, call_next):
    response = await call_next(request)
    response.headers["X-Custom-Header"] = "custom-header-value"
    return response

if __name__ == "__main__":
    uvicorn.run("app:hayhooks", host=settings.host, port=settings.port)
```
